《《2016 New Interior Point Algorithms in Linear Programming》.pdf
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AMO - Advanced Modeling and Optimization, Volume 5, Number 1, 2003
New Interior Point Algorithms
in Linear Programming†
Zsolt Darvay‡
Abstract
In this paper the abstract of the thesis ”New Interior Point Al-
gorithms in Linear Programming” is presented. The purpose of the
thesis is to elaborate new interior point algorithms for solving lin-
ear optimization problems. The theoretical complexity of the new
algorithms are calculated. We also prove that these algorithms are
polynomial. The thesis is composed of seven chapters. In the first
chapter a short history of interior point methods is discussed. In the
following three chapters some variants of the affine scaling, the projec-
tive and the path-following algorithms are presented. In the last three
chapters new path-following interior point algorithms are defined. In
the fifth chapter a new method for constructing search directions for
interior point algorithms is introduced, and a new primal-dual path-
following algorithm is defined. Polynomial complexity of this algo-
rithm is proved. We mention that this complexity is identical with
the best known complexity in the present. In the sixth chapter, using
a similar approach with the one defined in the previous chapter, a new
class of search directions for the self-dual problem is introduced. A
new primal-dual algorithm is defined for solving the self-dual linear
optimization problem, and polynomial complexity is proved. In the
last chapter the method proposed in the fifth chapter is generalized for
target-following methods. A conceptual target-follow
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